电化学气体传感器
传感器阵列
泄漏
气体探测器
堆栈(抽象数据类型)
危险废物
气体泄漏
分析物
计算机科学
探测器
工程类
化学
电气工程
机器学习
电极
电化学
有机化学
物理化学
环境工程
废物管理
程序设计语言
作者
Wonseok Ku,Geonhee Lee,Ju‐Yeon Lee,Do‐Hyeong Kim,Ki‐Hong Park,Jongtae Lim,Donghwi Cho,Seung-Chul Ha,Byung-Gil Jung,Heesu Hwang,Wooseop Lee,Huisu Shin,Ha Seon Jang,Jeong Yong Lee,Jin‐Ha Hwang
标识
DOI:10.1016/j.jhazmat.2024.133649
摘要
Combinations of semiconductor metal oxide (SMO) sensors, electrochemical (EC) sensors, and photoionization detection (PID) sensors were used to discriminate chemical hazards on the basis of machine learning. Sensing data inputs were exploited in the form of either numerical or image data formats, and the classification of chemical hazards with high accuracy was achieved in both cases. Even a small amount of gas sensing or purging data (input for ∼30 s) input can be exploited in machine-learning-based gas discrimination. SMO sensors exhibit high performance even in a single-sensor mode, presumably because of the intrinsic cross-sensitivity of metal oxides, which is otherwise considered a major disadvantage of SMO sensors. EC sensors were enhanced through synergistic integration of sensor combinations with machine learning. For precision detection of multiple target analytes, a minimum number of sensors can be proposed for gas detection/discrimination by combining sensors with dissimilar operating principles. The Type I hybrid sensor combines one SMO sensor, one EC sensor, and one PID sensor and is used to identify NH
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